PynamoDB
grand
PynamoDB | grand | |
---|---|---|
2 | 2 | |
2,377 | 76 | |
0.4% | - | |
6.3 | 2.8 | |
25 days ago | 18 days ago | |
Python | Python | |
MIT License | Apache License 2.0 |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
PynamoDB
-
A simple Python wrapper to AWS DynamoDB
Genuine question - why would you choose this over https://github.com/pynamodb/PynamoDB ?
-
A minimalistic Python wrapper to AWS DynamoDB
I've been pretty happy using PynamoDB, an ORM-like wrapper with a straightforward interface:
https://github.com/pynamodb/PynamoDB
grand
-
Show HN: In-memory graph "database" with NetworkX and openCypher
Cypher is a super useful language for querying graph structures, but sometimes it's overkill to load a tiny graph into Neo4j or memgraph. We wrote this tool to act as an abstraction layer so you can query in-memory graph data -- or, using [Grand](https://github.com/aplbrain/grand), rewrite Cypher queries to run on SQLite dbs or even other graph databases that don't support Cypher out of the box. Hoping it'll be helpful to those in the network theory, graph ML, and data science communities!
-
A minimalistic Python wrapper to AWS DynamoDB
Hey cool! I'm super curious to hear more about this. I _also_ wrote a pseudo-graph-database on DynamoDB (https://github.com/aplbrain/grand) :) It pretends it's a networkx.Graph, generally, but we also have a Cypher implementation on top of it.
Would love to chat more about this sometime if you were interested!
What are some alternatives?
flywheel - Object mapper for Amazon's DynamoDB
netgraph - Publication-quality network visualisations in python
MongoEngine - A Python Object-Document-Mapper for working with MongoDB
networkx-guide - We here are very big fans of NetworkX as a graph library and its comprehensive set of graph algorithms. For many though, working with NetworkX involves a steep learning curve. This guide is designed as an aid for beginners and experienced users to find specific tips and explore the world of complex networks.
django-mongodb-engine - Django MongoDB Backend
grand-cypher - Implementation of the Cypher language for searching NetworkX graphs
Tornado-SQLAlchemy - SQLAlchemy support for Tornado
chinese-whispers - An implementation of Chinese Whispers in Python.
Orator - The Orator ORM provides a simple yet beautiful ActiveRecord implementation.
YassQueenDB - Graph database library that allows you to store, analyze, and search through your data in a graph format. By using the Universal Sentence Encoder, it provides an efficient and semantic approach to handle text data. 📚🧠🚀
hot-redis - Rich Python data types for Redis
dotmotif - A performant, powerful query framework to search for network motifs